‘user’ table:
id | name | course |
1 | Alice | 1 |
2 | Bob | 1 |
3 | Caroline | 2 |
4 | David | 5 |
5 | Emma | (NULL) |
MySQL table creation code:
CREATE TABLE `user` (
`id` smallint(5) unsigned NOT NULL AUTO_INCREMENT,
`name` varchar(30) NOT NULL,
`course` smallint(5) unsigned DEFAULT NULL,
PRIMARY KEY (`id`)
) ENGINE=InnoDB;
The course number relates to a subject being taken in a course table…
‘course’ table:
id | name |
1 | HTML5 |
2 | CSS3 |
3 | JavaScript |
4 | PHP |
5 | MySQL |
MySQL table creation code:
CREATE TABLE `course` (
`id` smallint(5) unsigned NOT NULL AUTO_INCREMENT,
`name` varchar(50) NOT NULL,
PRIMARY KEY (`id`)
) ENGINE=InnoDB;
Since we’re using InnoDB tables and know that user.course and course.id are related, we can specify a foreign key relationship:
ALTER TABLE `user`
ADD CONSTRAINT `FK_course`
FOREIGN KEY (`course`) REFERENCES `course` (`id`)
ON UPDATE CASCADE;
In essence, MySQL will automatically:
- re-number the associated entries in the user.course column if the course.id changes
- reject any attempt to delete a course where users are enrolled.
important: This is terrible database design!
This
database is not efficient. It’s fine for this example, but a student
can only be enrolled on zero or one course. A real system would need to
overcome this restriction — probably using an intermediate ‘enrollment’
table which mapped any number of students to any number of courses.
JOINs allow us to query this data in a number of ways.
INNER JOIN (or just JOIN)

The
most frequently used clause is INNER JOIN. This produces a set of
records which match in both the user and course tables, i.e. all users
who are enrolled on a course:
SELECT user.name, course.name
FROM `user`
INNER JOIN `course` on user.course = course.id;
Result:
user.name | course.name |
Alice | HTML5 |
Bob | HTML5 |
Carline | CSS3 |
David | MySQL |
LEFT JOIN

What
if we require a list of all students and their courses even if they’re
not enrolled on one? A LEFT JOIN produces a set of records which matches
every entry in the left table (user) regardless of any matching entry
in the right table (course):
SELECT user.name, course.name
FROM `user`
LEFT JOIN `course` on user.course = course.id;
Result:
user.name | course.name |
Alice | HTML5 |
Bob | HTML5 |
Carline | CSS3 |
David | MySQL |
Emma | (NULL) |
RIGHT JOIN

Perhaps
we require a list all courses and students even if no one has been
enrolled? A RIGHT JOIN produces a set of records which matches every
entry in the right table (course) regardless of any matching entry in
the left table (user):
SELECT user.name, course.name
FROM `user`
RIGHT JOIN `course` on user.course = course.id;
Result:
user.name | course.name |
Alice | HTML5 |
Bob | HTML5 |
Carline | CSS3 |
(NULL) | JavaScript |
(NULL) | PHP |
David | MySQL |
RIGHT
JOINs are rarely used since you can express the same result using a
LEFT JOIN. This can be more efficient and quicker for the database to
parse:
SELECT user.name, course.name
FROM `course`
LEFT JOIN `user` on user.course = course.id;
We could, for example, count the number of students enrolled on each course:
SELECT course.name, COUNT(user.name)
FROM `course`
LEFT JOIN `user` ON user.course = course.id
GROUP BY course.id;
Result:
course.name | count() |
HTML5 | 2 |
CSS3 | 1 |
JavaScript | 0 |
PHP | 0 |
MySQL | 1 |
OUTER JOIN (or FULL OUTER JOIN)

Our
last option is the OUTER JOIN which returns all records in both tables
regardless of any match. Where no match exists, the missing side will
contain NULL.
OUTER JOIN is less useful than INNER, LEFT or RIGHT
and it’s not implemented in MySQL. However, you can work around this
restriction using the UNION of a LEFT and RIGHT JOIN, e.g.
SELECT user.name, course.name
FROM `user`
LEFT JOIN `course` on user.course = course.id
UNION
SELECT user.name, course.name
FROM `user`
RIGHT JOIN `course` on user.course = course.id;
Result:
user.name | course.name |
Alice | HTML5 |
Bob | HTML5 |
Carline | CSS3 |
David | MySQL |
Emma | (NULL) |
(NULL) | JavaScript |
(NULL) | PHP |
I hope that gives you a better understanding of JOINs and helps you write more efficient SQL queries.
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